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Design and Applications of Intelligent Systems in Identifying Future Occurrence of Tuberculosis Infection in Population at Risk

机译:识别高危人群未来结核感染的智能系统的设计与应用

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Tuberculosis is a treatable but severe disease caused by Mycobacte-rium tuberculosis (Mtb). Recent statistics by international health organizations estimate the Mtb exposure to have reached over two billion individuals. Delay in disease diagnosis could be fatal, especially to the population at risk, such as individuals with compromised immune systems. Intelligent decision systems (IDS) provide a promising tool to expedite discovery of biomarkers, and to boost their impact on earlier prediction of the likelihood of the disease onset. A novel IDS (iTB) is designed that integrates results from molecular medicine and systems biology of Mtb infection to estimate model parameters for prediction of the dynamics of the gene networks in Mtb-infected laboratory animals. The mouse model identifies a number of genes whose expressions could be significantly altered during the TB activation. Among them, a much smaller number of the most informative genes for prediction of the onset of TB are selected using a modified version of Empirical Risk Minimization as in Vapnik's statistical learning theory. A hybrid intelligent system is designed to take as input the mRNA abundance at a near genome-size from the individual-to-be-tested, measured 3-4 times. The algorithms determine if that individual is at risk of the onset of the disease based on our current analysis of mRNA data, and to predict the values of the biomarkers for a future period (of up to 60 days for mice; this may differ for humans). An early warning sign allows conducting gene expression analysis during the activation which aims to find key genes that are expressed. With rapid advances in low-cost genome-based diagnosis, this IDS architecture provides a promising platform to advance Personalized Health Care based on sequencing the genome and microarray analysis of samples obtained from individuals at risk. The novelty of the design of iTB lies in the integration of the IDS design principles and the solution of the biological problems hand-in-hand, so as to provide an AI framework for biologically better-targeted personalized prevention/treatment for the high-risk groups. The iTB design applies in more generality, and provides the potential for extension of our Al-approach to personalized-medicine to prevent other public health pandemics.
机译:结核病是一种由结核分枝杆菌(Mtb)引起的可治疗但严重的疾病。国际卫生组织的最新统计数据估计,MTb的接触量已超过20亿。疾病诊断的延迟可能是致命的,特别是对于处于危险中的人群,例如免疫系统受损的个体。智能决策系统(IDS)提供了一个有前途的工具,可以加快生物标志物的发现,并增强其对疾病发病可能性的早期预测的影响。设计了一种新颖的IDS(iTB),它将分子医学和Mtb感染的系统生物学结果整合在一起,以估计模型参数,以预测受Mtb感染的实验动物的基因网络的动态。小鼠模型识别出许多基因,这些基因的表达在TB激活过程中可能会发生明显改变。其中,使用Vapnik统计学习理论中的经验风险最小化的改进版本,可以选择较少数量的预测结核病发作的最有用的基因。设计了一种混合智能系统,以从待测个体以接近基因组大小的3-4倍输入mRNA丰度作为输入。该算法会根据我们目前对mRNA数据的分析,确定该个体是否有罹患疾病的风险,并预测未来一段时间(小鼠长达60天的生物标志物的值;对于人类而言,可能有所不同) )。预警信号可以在激活过程中进行基因表达分析,目的是寻找表达的关键基因。随着基于基因组的低成本诊断的快速发展,这种IDS体系结构提供了一个有前途的平台,可基于对有风险个体的样本进行基因组测序和微阵列分析,从而推动个性化医疗保健。 iTB设计的新颖之处在于将IDS设计原理与生物问题的解决相结合,从而为针对高危人群的生物学针对性更强的个性化预防/治疗提供AI框架组。 iTB设计的适用范围更广,为将我们的Al方法扩展到个性化药物以预防其他公共卫生大流行提供了潜力。

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